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A sparsification approach to set membership identification of a class of affine hybrid systems

机译:一种稀疏化方法,用于设置一类仿射混合系统的成员身份标识

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This paper addresses the problem of robust identification of a class of discrete-time affine hybrid systems, switched affine models, in a set membership framework. Given a finite collection of noisy input/output data and some minimal a priori information about the set of admissible plants, the objective is to identify a suitable set of affine models along with a switching sequence that can explain the available experimental information, while optimizing a performance criteria (either minimum number of switches or minimum number of plants). Our main result shows that this problem can be reduced to a sparsification form, where the goal is to maximize sparsity of a given vector sequence. Although in principle this leads to an NP-hard problem, as we show in the paper, efficient convex relaxations can be obtained by exploiting recent results on sparse signal recovery. These results are illustrated using two non-trivial problems arising in computer vision applications: video-shot and dynamic texture segmentation.
机译:本文解决了在一组隶属度框架中鲁棒识别一类离散时间仿射混合系统,切换仿射模型的问题。给定有限的嘈杂输入/输出数据集合以及关于允许植物的最小先验信息,目标是确定合适的仿射模型集以及可以解释可用实验信息的切换序列,同时优化性能标准(最小开关数量或最小工厂数量)。我们的主要结果表明,该问题可以简化为稀疏形式,其目标是最大化给定向量序列的稀疏性。尽管从原理上讲这会导致NP难题,但正如我们在本文中所显示的,可以通过利用稀疏信号恢复的最新结果来获得有效的凸松弛。使用计算机视觉应用中出现的两个非凡问题来说明这些结果:视频拍摄和动态纹理分割。

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